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用于改善锂金属二次电池性能的多组分电解质添加剂的高通量组合筛选

High-throughput combinatorial screening of multi-component electrolyte additives to improve the performance of Li metal secondary batteries.

作者信息

Matsuda Shoichi, Nishioka Kiho, Nakanishi Shuji

机构信息

Global Research Center for Environment and Energy based on Nanomaterials Science, National Institute of Material Science, 1-1 Namiki, Tsukuba, Ibaraki, 305-0044, Japan.

Graduate School of Engineering Science, Osaka University, 1-3 Machikaneyama, Toyonaka, Osaka, 560-8531, Japan.

出版信息

Sci Rep. 2019 Apr 17;9(1):6211. doi: 10.1038/s41598-019-42766-x.

Abstract

Data-driven material discovery has recently become popular in the field of next-generation secondary batteries. However, it is important to obtain large, high quality data sets to apply data-driven methods such as evolutionary algorithms or Bayesian optimization. Combinatorial high-throughput techniques are an effective approach to obtaining large data sets together with reliable quality. In the present study, we developed a combinatorial high-throughput system (HTS) with a throughput of 400 samples/day. The aim was to identify suitable combinations of additives to improve the performance of lithium metal electrodes for use in lithium batteries. Based on the high-throughput screening of 2002 samples, a specific combination of five additives was selected that drastically improved the coulombic efficiency (CE) of a lithium metal electrode. Importantly, the CE was remarkably decreased merely by removing one of these components, highlighting the synergistic basis of this mixture. The results of this study show that the HTS presented herein is a viable means of accelerating the discovery of ideal yet complex electrolytes with multiple components that are very difficult to identify via conventional bottom-up approach.

摘要

数据驱动的材料发现最近在下一代二次电池领域变得流行起来。然而,要应用诸如进化算法或贝叶斯优化等数据驱动方法,获得大量高质量的数据集很重要。组合高通量技术是获得大量数据集并保证可靠质量的有效方法。在本研究中,我们开发了一个通量为每天400个样品的组合高通量系统(HTS)。目的是确定合适的添加剂组合,以改善用于锂电池的锂金属电极的性能。基于对2002个样品的高通量筛选,选择了五种添加剂的特定组合,该组合极大地提高了锂金属电极的库仑效率(CE)。重要的是,仅去除其中一种成分,CE就会显著降低,突出了这种混合物的协同作用基础。本研究结果表明,本文介绍的HTS是加速发现理想但复杂的多组分电解质的可行方法,而这些电解质通过传统的自下而上方法很难识别。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/cc1c/6470175/8dbc85c97ec3/41598_2019_42766_Fig1_HTML.jpg

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